Deep Learning on Ultrasound Images Visualizes the Femoral Nerve with Good Precision

Healthcare (Basel). 2023 Jan 7;11(2):184. doi: 10.3390/healthcare11020184.

Abstract

The number of hip fractures per year worldwide is estimated to reach 6 million by the year 2050. Despite the many advantages of regional blockades when managing pain from such a fracture, these are used to a lesser extent than general analgesia. One reason is that the opportunities for training and obtaining clinical experience in applying nerve blocks can be a challenge in many clinical settings. Ultrasound image guidance based on artificial intelligence may be one way to increase nerve block success rate. We propose an approach using a deep learning semantic segmentation model with U-net architecture to identify the femoral nerve in ultrasound images. The dataset consisted of 1410 ultrasound images that were collected from 48 patients. The images were manually annotated by a clinical professional and a segmentation model was trained. After training the model for 350 epochs, the results were validated with a 10-fold cross-validation. This showed a mean Intersection over Union of 74%, with an interquartile range of 0.66-0.81.

Keywords: artificial intelligence; deep learning; hip fracture; nerve blocks; ultrasound.

Grants and funding

This study was supported by Lions Forskningsfond Skåne (200415), the VINNOVA AIDA program (Dnr: 2017-02447) and the Sten K Johnson Foundation (Ref. no. 20210491).